# Best large language models for long-context reasoning and analysis?

<p class="elv-tracking-normal elv-text-default elv-font-figtree elv-text-base elv-leading-base elv-font-normal" elv="true">Hi,</p><p class="elv-tracking-normal elv-text-default elv-font-figtree elv-text-base elv-leading-base elv-font-normal" elv="true">More teams I work with are pushing LLMs to analyze long documents, conversations, and datasets where context really matters.</p><p class="elv-tracking-normal elv-text-default elv-font-figtree elv-text-base elv-leading-base elv-font-normal" elv="true">To see what’s most commonly trusted, I looked at <strong>G2 data for the </strong><a class="a a--md" elv="true" href="https://www.g2.com/categories/large-language-models-llms"><strong>Large Language Models category</strong> </a>with long-context reasoning in mind.</p><p class="elv-tracking-normal elv-text-default elv-font-figtree elv-text-base elv-leading-base elv-font-normal" elv="true">Here’s what ranks highest.</p><strong>Top LLM tools (by G2 Score)</strong><ul>
<li>Gemini: Best for teams that want strong long-context understanding and reasoning.</li>
<li>Meta Llama 3: Best for teams that want control over context length and memory handling.</li>
<li>BERT: Best for teams that want deep contextual understanding for analysis tasks.</li>
<li>GPT-4: Best for teams that want detailed reasoning across long and complex inputs.</li>
<li>GPT-3: Best for teams that want scalable analysis with moderate context depth.</li>
<li>Megatron-LM: Best for teams that want large-context models trained for deep analytical workloads.</li>
</ul><p class="elv-tracking-normal elv-text-default elv-font-figtree elv-text-base elv-leading-base elv-font-normal" elv="true">Anyone pushing LLMs to their context limits today? I also see chunking and RAG strategies mentioned a lot. Any other tool to include? What’s been your experience?</p><p class="elv-tracking-normal elv-text-default elv-font-figtree elv-text-base elv-leading-base elv-font-normal" elv="true"></p><p class="elv-tracking-normal elv-text-default elv-font-figtree elv-text-base elv-leading-base elv-font-normal" elv="true"></p>

##### Post Metadata
- Posted at: 5 months ago
- Author title: SaaS and Software Research
- Net upvotes: 1


## Comments
### Comment 1

&lt;p&gt;Do you handle long context in-model—or outside the model with retrieval?&lt;/p&gt;

##### Comment Metadata
- Posted at: 5 months ago
- Author title: SaaS and Software Research





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